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CPU workload forecasting of machines in data centers using LSTM recurrent neural networks and ARIMA models

机译:使用LSTM递归神经网络和ARIMA模型预测数据中心中机器的CPU工作量

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The advent of Data Science has led to data being evermore useful for an increasing number of organizations who want to extract knowledge from it for financial and research purposes. This has triggered data to be mined at an even faster pace causing the rise of Data Centers that host over thousands of machines together with thousands of jobs running in each of those machines. The growing complexities associated with managing such a huge infrastructure has caused the scheduling management systems to be inefficient at resource allocation across these machines. Hence, resource usage forecasting of machines in data centers is a growing area for research. This study focuses on the Time Series forecasting of CPU usage of machines in data centers using Long Short-Term Memory (LSTM) Network and evaluating it against the widely used and traditional autoregressive integrated moving average (ARIMA) models for forecasting. The final LSTM model had a forecasting error in the range of 17-23% compared to ARIMA model's 3742%. The results clearly show that LSTM models performed more consistently due to their ability to learn non-linear data much better than ARIMA models.
机译:数据科学的出现使数据对于越来越多的组织出于财务和研究目的而从中提取知识变得越来越有用。这触发了以更快的速度挖掘数据,从而导致托管超过数千台计算机以及每台计算机上运行数千个作业的数据中心的兴起。与管理如此庞大的基础架构相关的复杂性日益增加,导致调度管理系统在这些机器之间的资源分配效率低下。因此,预测数据中心中机器的资源使用情况是一个不断增长的研究领域。这项研究的重点是使用长短期内存(LSTM)网络对数据中心中机器的CPU使用率进行时间序列预测,并根据广泛使用的传统自动回归综合移动平均值(ARIMA)模型对其进行评估。与ARIMA模型的3742 \%相比,最终的LSTM模型的预测误差在17-23%的范围内。结果清楚地表明,由于LSTM模型学习非线性数据的能力比ARIMA模型要好得多,因此其表现更为一致。

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